← Back
Publicaciones

Memetic algorithms to product-unit neural networks for regression

Authors

MARTÍNEZ ESTUDILLO, FRANCISCO JOSÉ, Hervás-Martínez C. , MARTÍNEZ ESTUDILLO, ALFONSO CARLOS, Ortíz-Boyer D.

External publication

No

Means

Lect. Notes Comput. Sci.

Scope

Conference Paper

Nature

Científica

JCR Quartile

SJR Quartile

JCR Impact

0.402

SJR Impact

0.334

Publication date

01/01/2005

Scopus Id

2-s2.0-25144507014

Abstract

In this paper we present a new method for hybrid evolutionary algorithms where only a few best individuals are subject to local optimization. Moreover, the optimization algorithm is only applied at specific stages of the evolutionary process. The key aspect of our work is the use of a clustering algorithm to select the individuals to be optimized. The underlying idea is that we can achieve a very good performance if, instead of optimizing many very similar individuals, we optimize just a few different individuals. This approach is less computationally expensive. Our results show a very interesting performance when this model is compared to other standard algorithms. The proposed model is evaluated in the optimization of the structure and weights of product-unit based neural networks. © Springer-Verlag Berlin Heidelberg 2005.

Keywords

Computational complexity; Neural networks; Optimization; Regression analysis; Hybrid evolutionary algorithms; Optimization algorithms; Algorithms